Estimating unconfined compressive strength of unsaturated cemented soils using alternative evolutionary approaches

Abstract The use of cement as a curing agent has been widely adopted in soft soil engineering to increase the strength of soft soil. The cemented soil is gradually exposed to the air and in a natural environment becomes unsaturated. Unconfined compressive strength (UCS) of the unsaturated cemented soils is a key parameter for assessing their strength behaviour. UCS determination of unsaturated cemented soils by using laboratory methods is a complex, time-consuming, and expensive procedure due to the difficulty in suction control. This study aims to model the UCS of unsaturated cemented Wenzhou clay, i.e., capture the nonlinear relations between UCS and its influential variables including cement content (%), dry density (g/cm3) and suction (MPa) for the first time by using machine learning approach. Toward this aim, three advanced computational frameworks are developed based on hybrid evolutionary approaches in which evolutionary optimisation algorithms including genetic algorithm (GA), particle swarm optimisation (PSO) and imperialist competitive algorithm (ICA) are hybridised with artificial neural network (ANN). Results show that developed models have a great ability to mimic the nonlinear relationships between UCS and its influential variables and PSO-ANN presents the best performance among three models on the training dataset with R 2 = 0.9888 , RMSE = 0.129 and VAF = 97.742 , and testing dataset with R 2 = 0.9412 , RMSE = 0.237 and VAF = 90.414 . To facilitate engineering application, an engineering database for Wenzhou soft clay at different cement ratios (up to 11%), suctions (up to 300 MPa) and dry densities (1–1.5 g/cm3) is built by using the developed PSO-ANN model.

[1]  Majidreza Nazem,et al.  Estimation of Bearing Capacity of Piles in Cohesionless Soil Using Optimised Machine Learning Approaches , 2019, Geotechnical and Geological Engineering.

[2]  R. Ruthen The Frustrations of a Quark Hunter , 1992 .

[3]  Yin-Fu Jin,et al.  Investigation into MOGA for identifying parameters of a critical-state-based sand model and parameters correlation by factor analysis , 2016 .

[4]  Roohollah Shirani Faradonbeh,et al.  An expert system based on hybrid ICA-ANN technique to estimate macerals contents of Indian coals , 2017, Environmental Earth Sciences.

[5]  Pijush Samui,et al.  Modelling the energy performance of residential buildings using advanced computational frameworks based on RVM, GMDH, ANFIS-BBO and ANFIS-IPSO , 2021 .

[6]  Y. Yao,et al.  Non-isothermal unified hardening model: a thermo-elasto-plastic model for clays , 2013 .

[7]  Caro Lucas,et al.  Imperialist competitive algorithm: An algorithm for optimization inspired by imperialistic competition , 2007, 2007 IEEE Congress on Evolutionary Computation.

[8]  Annan Zhou,et al.  Hydromechanical behaviour of overconsolidated unsaturated soil in undrained conditions , 2019, Canadian Geotechnical Journal.

[9]  Amin Mohebkhah,et al.  Stochastic Vulnerability Assessment of Masonry Structures: Concepts, Modeling and Restoration Aspects , 2019, Applied Sciences.

[10]  Suksun Horpibulsuk,et al.  Clay–Water∕Cement Ratio Identity for Cement Admixed Soft Clays , 2005 .

[11]  S. Moorthi,et al.  Implementation of hybrid ANN-PSO algorithm on FPGA for harmonic estimation , 2012, Eng. Appl. Artif. Intell..

[12]  Shui-Long Shen,et al.  Dynamic prediction of jet grouted column diameter in soft soil using Bi-LSTM deep learning , 2020 .

[13]  Yin-Fu Jin,et al.  Enhancement of backtracking search algorithm for identifying soil parameters , 2020, International Journal for Numerical and Analytical Methods in Geomechanics.

[14]  Yin‐Fu Jin,et al.  State-of-the-Art Review of Machine Learning Applications in Constitutive Modeling of Soils , 2021 .

[15]  D. Chapman,et al.  Evolutionary computing to determine the skin friction capacity of piles embedded in clay and evaluation of the available analytical methods , 2020, Transportation Geotechnics.

[16]  Annan Zhou,et al.  Modelling of municipal solid waste gasification using an optimised ensemble soft computing model , 2021 .

[17]  Lothar M. Schmitt,et al.  Theory of genetic algorithms , 2001, Theor. Comput. Sci..

[18]  Dan Boneh,et al.  On genetic algorithms , 1995, COLT '95.

[19]  Danial Jahed Armaghani,et al.  Optimizing an ANN model with ICA for estimating bearing capacity of driven pile in cohesionless soil , 2018, Engineering with Computers.

[20]  Siamak Talatahari,et al.  Optimum design of skeletal structures using imperialist competitive algorithm , 2010 .

[21]  Amir H. Mohammadi,et al.  Improved estimation of Cetane number of fatty acid methyl esters (FAMEs) based biodiesels using TLBO-NN and PSO-NN models , 2018, Fuel.

[22]  Liu Han,et al.  The effect of ICA and PSO on ANN results in approximating elasticity modulus of rock material , 2018, Engineering with Computers.

[23]  Alireza Baghban,et al.  Neural computing approach for estimation of natural gas dew point temperature in glycol dehydration plant , 2018, International Journal of Ambient Energy.

[24]  Amir Hossein Gandomi,et al.  Multi expression programming: a new approach to formulation of soil classification , 2010, Engineering with Computers.

[25]  Russell C. Eberhart,et al.  A new optimizer using particle swarm theory , 1995, MHS'95. Proceedings of the Sixth International Symposium on Micro Machine and Human Science.

[26]  Danial Jahed Armaghani,et al.  An efficient optimal neural network based on gravitational search algorithm in predicting the deformation of geogrid-reinforced soil structures , 2021, Transportation Geotechnics.

[27]  Yin‐Fu Jin,et al.  A novel hybrid surrogate intelligent model for creep index prediction based on particle swarm optimization and random forest , 2020 .

[28]  Yin-Fu Jin,et al.  Optimization techniques for identifying soil parameters in geotechnical engineering: Comparative study and enhancement , 2018 .

[29]  Masoud Monjezi,et al.  Prediction of seismic slope stability through combination of particle swarm optimization and neural network , 2015, Engineering with Computers.

[30]  D. Sheng,et al.  Capillary water retention curve and shear strength of unsaturated soils , 2016 .

[31]  A. Ghorbani,et al.  Prediction of UCS and CBR of microsilica-lime stabilized sulfate silty sand using ANN and EPR models; application to the deep soil mixing , 2018 .

[32]  Marc Boulon,et al.  Soil parameter identification using a genetic algorithm , 2008 .

[33]  K. Taylor Summarizing multiple aspects of model performance in a single diagram , 2001 .

[34]  K. S. Heineck,et al.  Key Parameters for Strength Control of Artificially Cemented Soils , 2007 .

[35]  Yaser Jafarian,et al.  PREDICTIVE MODEL FOR NORMALIZED SHEAR MODULUS OF COHESIVE SOILS , 2013 .

[36]  Alireza Baghban,et al.  Utilization of LSSVM strategy to predict water content of sweet natural gas , 2017 .

[37]  Pijush Samui,et al.  Application of Artificial Intelligence to Maximum Dry Density and Unconfined Compressive Strength of Cement Stabilized Soil , 2011 .

[38]  Saro Lee,et al.  Evaluating unconfined compressive strength of cohesive soils stabilized with geopolymer: a computational intelligence approach , 2018, Engineering with Computers.

[39]  Alireza Baghban,et al.  Phase behavior modeling of asphaltene precipitation utilizing RBF-ANN approach , 2019, Petroleum Science and Technology.

[40]  Samir Khatir,et al.  Damage assessment in composite laminates using ANN-PSO-IGA and Cornwell indicator , 2019 .

[41]  Liborio Cavaleri,et al.  Mapping and holistic design of natural hydraulic lime mortars , 2020 .

[42]  A. Mahmoodzadeh,et al.  Artificial intelligence forecasting models of uniaxial compressive strength , 2020 .

[43]  D. Gallipoli,et al.  A bounding surface mechanical model for unsaturated cemented soils under isotropic stresses , 2020, Computers and Geotechnics.

[44]  Arun S. Mujumdar,et al.  Hybrid phenomenological/ANN-PSO modelling of a deformable material in spouted bed drying process , 2020 .

[45]  Goldberg,et al.  Genetic algorithms , 1993, Robust Control Systems with Genetic Algorithms.

[46]  A. Mohammadi,et al.  Group contribution methods for estimating CO2 absorption capacities of imidazolium and ammonium-based polyionic liquids , 2018, Journal of Cleaner Production.

[47]  Heinz Mühlenbein,et al.  The parallel genetic algorithm as function optimizer , 1991, Parallel Comput..

[48]  Pijush Samui,et al.  A novel technique based on the improved firefly algorithm coupled with extreme learning machine (ELM-IFF) for predicting the thermal conductivity of soil , 2021, Engineering with Computers.

[49]  Caro Lucas,et al.  Imperialist competitive algorithm for minimum bit error rate beamforming , 2009, Int. J. Bio Inspired Comput..

[50]  Chuang Yu,et al.  Experimental Study on Strength and Microstructure of Cemented Soil with Different Suctions , 2019, Journal of Materials in Civil Engineering.

[51]  Yin-Fu Jin,et al.  A new hybrid real-coded genetic algorithm and its application to parameters identification of soils , 2017 .

[52]  Panagiotis G. Asteris,et al.  Anisotropic masonry failure criterion using artificial neural networks , 2017, Neural Computing and Applications.

[53]  Said Kenai,et al.  Performance of compacted cement-stabilised soil , 2004 .

[54]  Riccardo Poli,et al.  Particle swarm optimization , 1995, Swarm Intelligence.

[55]  Jinbo Bi,et al.  Regression Error Characteristic Curves , 2003, ICML.

[56]  Mohammad Hassan Baziar,et al.  Assessment of liquefaction triggering using strain energy concept and ANN model: Capacity Energy , 2007 .

[57]  Danial Jahed Armaghani,et al.  A novel approach for classification of soils based on laboratory tests using Adaboost, Tree and ANN modeling , 2021 .

[58]  Ravindra Nagar,et al.  Modeling slump of ready mix concrete using genetic algorithms assisted training of Artificial Neural Networks , 2015, Expert Syst. Appl..

[59]  Hamed Javdanian,et al.  Evaluation of soil liquefaction potential using energy approach: experimental and statistical investigation , 2019, Bulletin of Engineering Geology and the Environment.

[60]  Yacine Rezgui,et al.  ANN–GA smart appliance scheduling for optimised energy management in the domestic sector , 2016 .

[61]  A. Gharehghani,et al.  Developing a model to predict the start of combustion in HCCI engine using ANN-GA approach , 2019, Energy Conversion and Management.

[62]  N. Consoli,et al.  Parameters Controlling Tensile and Compressive Strength of Fiber-Reinforced Cemented Soil , 2013 .

[63]  S. Shen,et al.  Improved prediction of slope stability using a hybrid stacking ensemble method based on finite element analysis and field data , 2020 .

[64]  Pijush Samui,et al.  Determination of ultimate capacity of driven piles in cohesionless soil: A Multivariate Adaptive Regression Spline approach , 2012 .

[65]  Yin-Fu Jin,et al.  Intelligent modelling of clay compressibility using hybrid meta-heuristic and machine learning algorithms , 2021, Geoscience Frontiers.